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Nonlinear Unmixing of Hyperspectral Data With Vector-Valued Kernel Functions

机译:具有向量值核函数的高光谱数据的非线性分解

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This paper presents a kernel-based nonlinear mixing model for hyperspectral data, where the nonlinear function belongs to a Hilbert space of vector valued functions. The proposed model extends the existing ones by accounting for band-dependent and neighboring nonlinear contributions. The key idea is to work under the assumption that nonlinear contributions are dominant in some parts of the spectrum, while they are less pronounced in other parts. In addition to this, we motivate the need for taking into account nonlinear contributions originating from the ground covers of neighboring pixels by practical considerations, precisely the adjacency effect. The relevance of the proposed model is that the nonlinear function is associated with a matrix valued kernel that allows to jointly model a wide range of nonlinearities and includes prior information regarding band dependences. Furthermore, the choice of the nonlinear function input allows to incorporate neighboring effects. The optimization problem is strictly convex and the corresponding iterative algorithm is based on the alternating direction method of multipliers. Finally, experiments conducted using synthetic and real data demonstrate the effectiveness of the proposed approach.
机译:本文提出了一种基于核的高光谱数据非线性混合模型,其中非线性函数属于矢量值函数的希尔伯特空间。所提出的模型通过考虑与频带相关和相邻的非线性影响来扩展现有模型。关键思想是在以下假设下工作:非线性贡献在频谱的某些部分占主导地位,而在其他部分则不那么明显。除此之外,我们还出于实际考虑,特别是邻接效应,激发了考虑源自相邻像素地面覆盖的非线性影响的需求。所提出的模型的相关性在于,非线性函数与矩阵值内核相关联,该矩阵值内核可以共同对广泛的非线性范围进行建模,并包括有关频带依赖性的先验信息。此外,非线性函数输入的选择允许合并邻近效应。优化问题是严格凸的,相应的迭代算法基于乘数的交替方向方法。最后,使用合成和真实数据进行的实验证明了该方法的有效性。

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